机器学习-反向传播算法(BP)代码实现(matlab)

时间:2021-07-29 09:16:08
%% Machine Learning Online Class - Exercise 4 Neural Network Learning

% Instructions
% ------------
%
% This file contains code that helps you get started on the
% linear exercise. You will need to complete the following functions
% in this exericse:
%
% sigmoidGradient.m
% randInitializeWeights.m
% nnCostFunction.m
%
% For this exercise, you will not need to change any code in this file,
% or any other files other than those mentioned above.
% %% Initialization
clear ; close all; clc
%% Setup the parameters you will use for this exercise
input_layer_size = 400; % 20x20 Input Images of Digits
hidden_layer_size = 25; % 25 hidden units
num_labels = 10; % 10 labels, from 1 to 10
% (note that we have mapped "0" to label 10) %% =========== Part 1: Loading and Visualizing Data =============
% We start the exercise by first loading and visualizing the dataset.
% You will be working with a dataset that contains handwritten digits.
% % Load Training Data
fprintf('Loading and Visualizing Data ...\n') load('ex4data1.mat');
m = size(X, 1); % Randomly select 100 data points to display
sel = randperm(size(X, 1));
sel = sel(1:100);
sel(:);      ...

解释

a = X(sel, :);
X(sel, :);
.......
.......
.......
.......
.......
.
.
.
......

解释

displayData(X(sel, :));

fprintf('Program paused. Press enter to continue.\n');
pause; %% ================ Part 2: Loading Parameters ================
% In this part of the exercise, we load some pre-initialized
% neural network parameters. fprintf('\nLoading Saved Neural Network Parameters ...\n') % Load the weights into variables Theta1 and Theta2
load('ex4weights.mat'); % Unroll parameters
nn_params = [Theta1(:) ; Theta2(:)];
https://www.cnblogs.com/liu-wang/p/9466123.html

解释

%% ================ Part 3: Compute Cost (Feedforward) ================
% To the neural network, you should first start by implementing the
% feedforward part of the neural network that returns the cost only. You
% should complete the code in nnCostFunction.m to return cost. After
% implementing the feedforward to compute the cost, you can verify that
% your implementation is correct by verifying that you get the same cost
% as us for the fixed debugging parameters.
%
% We suggest implementing the feedforward cost *without* regularization
% first so that it will be easier for you to debug. Later, in part 4, you
% will get to implement the regularized cost.
%
fprintf('\nFeedforward Using Neural Network ...\n') % Weight regularization parameter (we set this to 0 here).
lambda = 0; J = nnCostFunction(nn_params, input_layer_size, hidden_layer_size, ...
num_labels, X, y, lambda); fprintf(['Cost at parameters (loaded from ex4weights): %f '...
'\n(this value should be about 0.287629)\n'], J); fprintf('\nProgram paused. Press enter to continue.\n');
pause; %% =============== Part 4: Implement Regularization ===============
% Once your cost function implementation is correct, you should now
% continue to implement the regularization with the cost.
% fprintf('\nChecking Cost Function (w/ Regularization) ... \n') % Weight regularization parameter (we set this to 1 here).
lambda = 1; J = nnCostFunction(nn_params, input_layer_size, hidden_layer_size, ...
num_labels, X, y, lambda); fprintf(['Cost at parameters (loaded from ex4weights): %f '...
'\n(this value should be about 0.383770)\n'], J); fprintf('Program paused. Press enter to continue.\n');
pause; %% ================ Part 5: Sigmoid Gradient ================
% Before you start implementing the neural network, you will first
% implement the gradient for the sigmoid function. You should complete the
% code in the sigmoidGradient.m file.
% fprintf('\nEvaluating sigmoid gradient...\n') g = sigmoidGradient([1 -0.5 0 0.5 1]);
fprintf('Sigmoid gradient evaluated at [1 -0.5 0 0.5 1]:\n ');
fprintf('%f ', g);
fprintf('\n\n'); fprintf('Program paused. Press enter to continue.\n');
pause; %% ================ Part 6: Initializing Pameters ================
% In this part of the exercise, you will be starting to implment a two
% layer neural network that classifies digits. You will start by
% implementing a function to initialize the weights of the neural network
% (randInitializeWeights.m) fprintf('\nInitializing Neural Network Parameters ...\n') initial_Theta1 = randInitializeWeights(input_layer_size, hidden_layer_size);
initial_Theta2 = randInitializeWeights(hidden_layer_size, num_labels); % Unroll parameters
initial_nn_params = [initial_Theta1(:) ; initial_Theta2(:)]; %% =============== Part 7: Implement Backpropagation ===============
% Once your cost matches up with ours, you should proceed to implement the
% backpropagation algorithm for the neural network. You should add to the
% code you've written in nnCostFunction.m to return the partial
% derivatives of the parameters.
%
fprintf('\nChecking Backpropagation... \n'); % Check gradients by running checkNNGradients
checkNNGradients; fprintf('\nProgram paused. Press enter to continue.\n');
pause; %% =============== Part 8: Implement Regularization ===============
% Once your backpropagation implementation is correct, you should now
% continue to implement the regularization with the cost and gradient.
% fprintf('\nChecking Backpropagation (w/ Regularization) ... \n') % Check gradients by running checkNNGradients
lambda = 3;
checkNNGradients(lambda); % Also output the costFunction debugging values
debug_J = nnCostFunction(nn_params, input_layer_size, ...
hidden_layer_size, num_labels, X, y, lambda); fprintf(['\n\nCost at (fixed) debugging parameters (w/ lambda = 10): %f ' ...
'\n(this value should be about 0.576051)\n\n'], debug_J); fprintf('Program paused. Press enter to continue.\n');
pause; %% =================== Part 8: Training NN ===================
% You have now implemented all the code necessary to train a neural
% network. To train your neural network, we will now use "fmincg", which
% is a function which works similarly to "fminunc". Recall that these
% advanced optimizers are able to train our cost functions efficiently as
% long as we provide them with the gradient computations.
%
fprintf('\nTraining Neural Network... \n') % After you have completed the assignment, change the MaxIter to a larger
% value to see how more training helps.
options = optimset('MaxIter', 50); % You should also try different values of lambda
lambda = 1; % Create "short hand" for the cost function to be minimized
costFunction = @(p) nnCostFunction(p, ...
input_layer_size, ...
hidden_layer_size, ...
num_labels, X, y, lambda); % Now, costFunction is a function that takes in only one argument (the
% neural network parameters)
[nn_params, cost] = fmincg(costFunction, initial_nn_params, options); % Obtain Theta1 and Theta2 back from nn_params
Theta1 = reshape(nn_params(1:hidden_layer_size * (input_layer_size + 1)), ...
hidden_layer_size, (input_layer_size + 1)); Theta2 = reshape(nn_params((1 + (hidden_layer_size * (input_layer_size + 1))):end), ...
num_labels, (hidden_layer_size + 1)); fprintf('Program paused. Press enter to continue.\n');
pause; %% ================= Part 9: Visualize Weights =================
% You can now "visualize" what the neural network is learning by
% displaying the hidden units to see what features they are capturing in
% the data. fprintf('\nVisualizing Neural Network... \n') displayData(Theta1(:, 2:end)); fprintf('\nProgram paused. Press enter to continue.\n');
pause; %% ================= Part 10: Implement Predict =================
% After training the neural network, we would like to use it to predict
% the labels. You will now implement the "predict" function to use the
% neural network to predict the labels of the training set. This lets
% you compute the training set accuracy. pred = predict(Theta1, Theta2, X); fprintf('\nTraining Set Accuracy: %f\n', mean(double(pred == y)) * 100);